EP2678718A2 - Méthode informatisée pour estimer la valeur d'au moins un paramètre d'une région productrice d'hydrocarbures, pour la planification de l'exploitation et l'exploitation de la région - Google Patents

Méthode informatisée pour estimer la valeur d'au moins un paramètre d'une région productrice d'hydrocarbures, pour la planification de l'exploitation et l'exploitation de la région

Info

Publication number
EP2678718A2
EP2678718A2 EP11723109.2A EP11723109A EP2678718A2 EP 2678718 A2 EP2678718 A2 EP 2678718A2 EP 11723109 A EP11723109 A EP 11723109A EP 2678718 A2 EP2678718 A2 EP 2678718A2
Authority
EP
European Patent Office
Prior art keywords
region
values
parameter
computerized method
parameters
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Withdrawn
Application number
EP11723109.2A
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German (de)
English (en)
Inventor
Vincent MONGALVY
Lu LU
Satish Agarwal
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TotalEnergies SE
Original Assignee
Total SE
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Filing date
Publication date
Application filed by Total SE filed Critical Total SE
Publication of EP2678718A2 publication Critical patent/EP2678718A2/fr
Withdrawn legal-status Critical Current

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Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F30/00Computer-aided design [CAD]
    • G06F30/20Design optimisation, verification or simulation
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01VGEOPHYSICS; GRAVITATIONAL MEASUREMENTS; DETECTING MASSES OR OBJECTS; TAGS
    • G01V99/00Subject matter not provided for in other groups of this subclass

Definitions

  • the instant invention relates to computerized methods for the estimation of a value for at least a parameter of a hydrocarbon-producing region (in particular a shale gas region) , for planning the operation and operating the region.
  • a hydrocarbon-producing region in particular a shale gas region
  • Shale gas is natural gas produced from shale. It has become an increasingly important source of natural gas in the world and is expected to greatly expand the worldwide energy supply.
  • the present invention has notably for object to improve the accuracy of the estimation of the region, furthermore with reduced computer time.
  • the invention relates to a computerized method for the planning of the operation of a hydrocarbon-producing region, comprising generating a reservoir model of the region.
  • the invention relates to a method of operation of a hydrocarbon-producing region, comprising producing hydrocarbons from the region.
  • the invention relates to a computer program product comprising instructions causing a programmable machine to execute steps of the method, when the computer program product is loaded in the programmable machine.
  • Fig. 1 is a schematic perspective view of a shale gas region
  • Fig. 2 is a schematic sectional view in the shale gas region of a horizontal well with associated propped highly conductive fracture plan
  • Fig. 3 is a schematic view showing the interaction between a design of experiment tool and a simulation tool
  • Fig. 4 is an exploded perspective view of a mesh used with the simulation tool
  • Fig. 5 is a graph comparing a simulated match parameter and experimental data
  • Fig. 6 is a diagrammatic chart of a process according to an embodiment
  • Fig. 7 is a schematic perspective view of a computerized system used to implement the process.
  • the same reference signs designate like or similar elements.
  • FIG. 1 schematically shows a region 1 for which the invention can be implemented.
  • the region 1 comprises a ground 2 as well as a plurality of underground strata 3a, 3b, 3c, 3d, etc. At least one of these strata is a hydrocarbon-producing region. In a particular embodiment of the invention, this region is a shale region. Although the invention is described below with reference to shale regions, it is believed that the invention may be applied to other kinds of hydrocarbon-producing regions, in particular when many parameters and physical phenomena influence the overall characteristics of hydrocarbon production from this region.
  • a well 4 is provided in the region 1.
  • a drill 5 is provided, which extends from the well 4 into the shale stratum 3b. In particular, the drill extends horizontally or close to the horizontal in the shale stratum.
  • FIG. 2 shows the drill 5, which extends schematically horizontally, as well as three distinct zones of the shale.
  • artificial fractures 6 are present. These fractures are for example provided by artificially propping fractures in the shale, for example using water and/or sand or the like. Propped fractures 6 are filled with sand or the like. Each fracture extends about a plane normal to the extension of the drill 5 and to a given distance from the drill. It is rather thin compared to the other dimensions of the system, and can be approximated as surfacic. A given spacing s between two subsequent fractures along the drill 5 can be provided as regular, or not, depending on the cases.
  • the rock volume 7 which surrounds the area containing the highly conductive propped fractures 6 is called the effective stimulated rock volume, or ESRV. It comprises - unpropped or slightly propped - artificial fractures, and possibly unpropped or slightly propped reactivated natural fractures .
  • the rock volume 8 outside the ESRV is called the unstimulated rock volume, or USRV.
  • the USRV can be considered as a matrix of rock where no artificial fractures extend.
  • a virtual border 9 delimits the ESRV from the USRV.
  • hydrocarbons from the region is believed to be governed at least by the following descriptive parameters (natural and/or engineered) :
  • conductivities including permeability of the matrix, permeability of the network (unpropped) fractures and permeability of the highly conductive propped fracture set, and
  • Such parameters may be used directly, or a different set of parameters may be used, for example based on different combinations of the above parameters.
  • Intervals for some other parameters may be determined, for example, from the scientific literature. This is for example the case for the permeability of the propped fractures (KHF) .
  • Some other intervals may be determined by analysis of the region, such as for example, using micro-seismic mapping, such as for example the stimulated rock volume to estimate the Effective Stimulated Rock Volume (ESRV) and/or the propped hydraulic fracture surface (HFSZ) .
  • ESRV Effective Stimulated Rock Volume
  • HFSZ propped hydraulic fracture surface
  • intervals may be difficult to determine using experimental data. This is for example, the case for the storativity of the unstimulated zone (GRV) , the permeability of the unpropped fracture (KMF) , the adsorption/diffusion dynamics (DYN) , the unpropped fracture network block size (o), the unpropped network fracture permeability impairment function with overburden pressure (RTNF) , and the highly conductive propped fracture permeability impairment function with overburden pressure (RTHF) . Yet, some constraints may be used to limit the size of these intervals, such as, for example, for the storativity of the unstimulated zone, the spacing of the wells, or for the fracture sizes, the volumes of injected sand and water.
  • Petrophysical and/or dynamic data may be used to determine the intervals.
  • FIG. 3 one embodiment of the method uses a coupling 10 between a simulation tool 11 and a design of experiment tool 12.
  • Both tools 11, 12 are for example software tools, whereby the method can be computerized, as will be explained below in relation to Fig. 7.
  • the simulation tool 11 is a tool which enables to perform a simulation of the production of hydrocarbons for a region defined by a set of values for the above parameters and/or other parameters to be defined as variables as needed.
  • a region corresponding to these parameters is geometrically and physically modelled, and a value for a match parameter can be estimated for this region.
  • the match parameter is, for example, a quantity of gas produced for the modelled region between an initial time T 0 and a final time T f .
  • the match parameter needs not necessarily be a value, but may also be a function, such as for example, a function of time, such as in particular, a production quantity for this region as a function of time.
  • experiment tool 12 is a tool enabling to define a set of experiments to be conducted, and to determine a ruling law for a match parameter as a function of the descriptive parameters identified above.
  • Each of the experiments consist in electing a value for each of the above parameters and for this set of values, performing as an experiment, a simulation using the simulation tool 11 for these parameter values.
  • the design of experiments tool 12 may define the match parameter MP as being a function f of the descriptive parameters as listed above.
  • the design of experiments tool may consider the following equation :
  • MP f (P l ...,P n ) .
  • f can for example be a polynomial function, of a given degree, for example a degree 2, meaning that the above equation can be written :
  • the function f is totally defined by a set of K weights ao, ai, a nn - Hence, for this linear system, performing a limited number of experiments would enable to determine these weights.
  • experiment tool 12 may further comprise statistic analysis tools such as Pareto tools and the like.
  • Fig. 4 shows in more details a geometrical model used for the simulation tool 11.
  • the three different areas 6, 7 and 8 are modelled with three different geometrical models.
  • the first model on the top of Fig. 4 is a model of the highly conductive propped fractures 6. This model is characterized by the width of the fractures, as well as the exchange surface with the stimulated block volume (HFSZ) .
  • the hydraulic permeability of the fractures (KHF) is a further parameter of these fractures as well as their porosity.
  • a second modelled medium is the effective stimulated rock volume (ESRV) .
  • ESRV effective stimulated rock volume
  • Parameters of the ESRV are its volume itself (ESRV) , constrained by the micro seismic data, the permeability of the matrix (KMTX) , the permeability of the unpropped fracture network (KNF) and the density of the fractures (o) . It is for example assumed that this volume is a single connected volume, so as to simplify the process.
  • the simulation tool is able to determine a value for the match parameter based on the above input.
  • Fig. 6 now schematically shows a flow chart of an embodiment of the process using the above tools.
  • the parameters Pi which will govern the behaviour of the region are identified. These parameters are for example the parameters listed above, or combinations of these parameters, or only some of these parameters, if some others are considered as irrelevant for the present study. Another option is to use parameters which the above parameters are combinations of. For example, injected water volume (V H 2o) injected sand volume (Vs a n d ) the size of grid cells used to discretize the propped fractures (S fraCgrid ), the reservoir thickness (H res ) , the initial fracture water saturation (SW), fracture network porosity (phiNF) , fracture aperture (Delta F) , ESRV, can be used.
  • V H 2o injected water volume
  • Vs a n d the size of grid cells used to discretize the propped fractures
  • SW initial fracture water saturation
  • phiNF fracture network porosity
  • Delta F fracture aperture
  • intervals are determined for each parameter. For example, for a parameter P lr it is determined that the value for the actual region is likely to extend in the interval [Pi, m i n ; Pi, max] ⁇
  • the intervals are determined as explained above, for example based on experimental or previously available data, and can be either very narrow, if a good knowledge of the parameter is present, or very wide, if the parameter has a totally unknown value.
  • Some of the parameters may be boolean, whereby the interval is [ 0 ; 1 ] .
  • intervals may be discretized into discrete values.
  • a number of possible discrete values are defined for each parameter, between the minimum and the maximum values.
  • These discrete values may be discretized using a regular scale, a logarithmic scale, or as judged necessary, taking into account the nature of the parameter, such as functions of other variables calculated by or supplied to the simulator. Further, the number of possible discrete values for different intervals may be different .
  • the discrete values may also be functions, such as, for example for RTNF and RTHF, which are functions of the overburden pressure.
  • the design of experiments tool 12 is used to define a group of experiments E .
  • Each experiment comprises each parameter Pu taking a discrete value P u , k u j chosen in the above intervals.
  • the experiments are chosen so as to be able to determine the ruling law f of the match parameter as a function of the descriptive parameters.
  • each experiment E j is performed using the simulation tool 11. This means that, for each experiment E j , a region is modelled as explained above in relation to Fig. 4, and the simulation tool determines the match parameter MP j for this experiment.
  • the match parameter corresponds to the gas production for the modelled region after six months of production.
  • the results of the above simulations are input again in the design of experiments tool 12 so as to determine the ruling law f of the match parameter as a function of the descriptive parameters Pi ; P n .
  • the weights ao, ai,... a nn are determined based on the above simulations.
  • Comparison of the reliability of f with a predetermined threshold is performed. Alternatively, this can be performed as follows: The function f is applied to the exhaustive set of parameter values defined at step 102, and the value of MP is calculated for each of these combinations, based on the function f . These calculated values for MP are compared with experimental data or predictive data for the production region. For example, if the match parameter MP corresponds to the production of the region after six months, and if the actual production of the region after six months is known, the known value is compared to the cloud of calculated values.
  • distance it is meant any mean enabling to estimate the accuracy of the simulated result with respect to the experimental or predictive data of reference.
  • the process moves back to step 101, where the ruling parameters may be redefined. For example, it may be considered that one or more of the parameters initially elected are not relevant to the present study, or give inaccurate results. Pareto plots may be used to rule out parameters. For example, the USRV may be disregarded.
  • the intervals may also be redefined. For example, if the function f is judged not reliable enough, it may be considered that the intervals were not broad enough, and a new run may be implemented using broader intervals. For other parameters, it may also be understood that the intervals were too broad, and that the new run would be performed on a narrower interval, enabling to test more precise values for each parameter.
  • One parameter can first be set into a first sub-interval to implement the above process. Then, the same process is performed separately for a second different sub-interval. Thus, a function f is provided for each sub-interval. This process may be continued until one of the functions f is judged satisfactory (reliable) at step 106.
  • the function f is determined for a time of production of for example six months.
  • the above process can be performed for other times t, since the simulation will anyway provide values for the match parameter along time MP(t) .
  • Repeating the above process for other time points will enable to define the weights as functions of time. This is shown for example on the right side of Fig. 3, where an exhaustive screening of the intervals was performed and the production as a function of time displayed on screen. Actual production data is shown by dots.
  • step 107 one goal of the step 107 is also to obtain a more accurate specification of each interval.
  • step 109 for the determined intervals which enabled to define f, one performs an exhaustive screening, and calculates the value MPi j , of the match parameter for each combination of values of the parameters of these intervals, using the function f . This is performed with low resources, since it only involves calculating values of a polynomial or simple function .
  • suitable sets of values ⁇ ⁇ , ⁇ are determined from the values MP ifj determined at step 109. For example, a given set of sets of values for the parameters (for example the 50 best sets of values are said suitable) which provide a value MPi, closest to the known value MPo will be selected at step 110. Hence, at step 110, one has identified, based on an exhaustive screening of the parameters, the fifty best sets of parameter values for describing the region of interest. This step does not involve any probabilistic approach.
  • the values for all parameters can be scaled between -1 and 1, as shown, where -1 corresponds to the minimum value and +1 to the maximum value of the interval.
  • a value for an investigated parameter is determined based on said suitable sets of values determined at step 110. For example, this value is determined using the simulation tool 11.
  • the sets of parameters ⁇ , ⁇ can be considered as input for the simulation tool and a simulation can be conducted using the simulation tool, using these values for the parameters.
  • the investigated parameter is a parameter which is not used in the above process (steps 101 to 110) . It may be an estimation of the production volume of the region in the far future, for example 30 or 100 years from the start of the production.
  • the simulation tool can be used, as explained above, to estimate the quantity of production after a few months so as to compare the results of the simulation with existing data. However, the simulation tool can be used to continue the simulation, so as to estimate, for the regions modelled with the sets of values determined at step 110, the amount of production after a longer period, for example 30 years.
  • This value will be estimated by statistical analysis of the results of the simulations performed for each of the suitable sets of values, elected at step 110.
  • the investigated parameter may not only be an estimation of the gas to be produced from the region, but could also for example be an estimation of the level of the uncertainty of the production of gas from this volume, production of associated water, or production of associated oil.
  • the dispersion of the suitable sets of values determined at step 110, and/or the dispersion of the results of the simulation tool applied to the selected values at step 111 may determine the level of uncertainty for this produced volume .
  • a decision to operate the region can thus be based on the above simulation.
  • the small window 13a describes the production P as a function of time t.
  • Each curve corresponds to an estimation of P, using the simulation tool for the elected sets of parameters values.
  • the dots correspond to actual production data for the three first years.
  • D shows the dispersion of the results at thirty years.
  • these parameters can be used for the planning of the operation of the region. These parameters can be introduced in a reservoir model of the region, so as to plan its operation by placing wells at suitable locations. Based on this planning, hydrocarbons can be produced.
  • Fig. 7 shows a computerized system 13 enabling to perform embodiments of the above process.
  • the computerized system may in particular comprise a processor 14 which is able to run a computer program comprising the design of experiments tool and the simulation tool.
  • a memory 15 can be used to store input data for the computer program, or to store data as results of these programs.
  • the computerized system 13 may further comprise interface means 16 such as keyboard, mouse, or screen enabling to input data or read data outputs from the memory.
  • the programs may be operated separately from one another, and communicate with one another using any suitable means, such as through a network of processing units or the like.

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  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Engineering & Computer Science (AREA)
  • General Life Sciences & Earth Sciences (AREA)
  • Theoretical Computer Science (AREA)
  • Life Sciences & Earth Sciences (AREA)
  • Geophysics (AREA)
  • Geometry (AREA)
  • General Engineering & Computer Science (AREA)
  • Evolutionary Computation (AREA)
  • Computer Hardware Design (AREA)
  • Management, Administration, Business Operations System, And Electronic Commerce (AREA)
  • Production Of Liquid Hydrocarbon Mixture For Refining Petroleum (AREA)
  • Feedback Control In General (AREA)

Abstract

Méthode pour estimer la valeur d'un paramètre visé d'une région productrice d'hydrocarbures, comprenant : a) l'utilisation d'un modèle d'outil de type expériences (12) pour déterminer une loi pour un paramètre concordant en fonction de paramètres descriptifs, b) la mise en œuvre d'une série d'expériences à l'aide d'un outil de simulation (11), la région étant géométriquement et physiquement modélisée à chaque expérience, c) la détermination (110) d'ensembles de valeurs appropriés pour les paramètres descriptifs à partir de la loi, d) la détermination (111) d'une valeur pour le paramètre visé parmi les ensembles de valeurs les plus vraisemblables.
EP11723109.2A 2011-02-23 2011-02-23 Méthode informatisée pour estimer la valeur d'au moins un paramètre d'une région productrice d'hydrocarbures, pour la planification de l'exploitation et l'exploitation de la région Withdrawn EP2678718A2 (fr)

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
PCT/IB2011/000773 WO2012114146A2 (fr) 2011-02-23 2011-02-23 Méthode informatisée pour estimer la valeur d'au moins un paramètre d'une région productrice d'hydrocarbures, pour la planification de l'exploitation et l'exploitation de la région

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EP2678718A2 true EP2678718A2 (fr) 2014-01-01

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EP11723109.2A Withdrawn EP2678718A2 (fr) 2011-02-23 2011-02-23 Méthode informatisée pour estimer la valeur d'au moins un paramètre d'une région productrice d'hydrocarbures, pour la planification de l'exploitation et l'exploitation de la région

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US (1) US20130332132A1 (fr)
EP (1) EP2678718A2 (fr)
CN (1) CN103477248A (fr)
AR (1) AR085376A1 (fr)
AU (1) AU2011360602B2 (fr)
CA (1) CA2827178A1 (fr)
WO (1) WO2012114146A2 (fr)

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CA2827178A1 (fr) 2012-08-30
AR085376A1 (es) 2013-09-25
AU2011360602A1 (en) 2013-09-12
CN103477248A (zh) 2013-12-25
WO2012114146A3 (fr) 2012-12-13
AU2011360602B2 (en) 2015-07-16
US20130332132A1 (en) 2013-12-12
WO2012114146A2 (fr) 2012-08-30

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